In this paper we show some paradigmatic examples of physics-aware soft sensors for embedded digital twins, i.e. algorithms for edge computing that are formulated with a scientific machine learning approach, where scientific computing methods are blended with machine learning and, in particular, neural computing. A physics-aware soft sensor is a numerical algorithm that performs an indirect measurement by exploiting a physico-mathematical model plus a possible data-driven extension, both used within an estimation algorithm.

Physics-Aware Soft Sensors for Embedded Digital Twins

Chinellato E.;Marcuzzi F.
;
2024

Abstract

In this paper we show some paradigmatic examples of physics-aware soft sensors for embedded digital twins, i.e. algorithms for edge computing that are formulated with a scientific machine learning approach, where scientific computing methods are blended with machine learning and, in particular, neural computing. A physics-aware soft sensor is a numerical algorithm that performs an indirect measurement by exploiting a physico-mathematical model plus a possible data-driven extension, both used within an estimation algorithm.
2024
Lecture Notes in Networks and Systems
9th International Congress on Information and Communication Technology, ICICT 2024
9789819735587
9789819735594
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3532162
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